Feb. 6, 2024, 5:41 a.m. | Mark Beliaev Ramtin Pedarsani

cs.LG updates on arXiv.org arxiv.org

In Imitation Learning (IL), utilizing suboptimal and heterogeneous demonstrations presents a substantial challenge due to the varied nature of real-world data. However, standard IL algorithms consider these datasets as homogeneous, thereby inheriting the deficiencies of suboptimal demonstrators. Previous approaches to this issue typically rely on impractical assumptions like high-quality data subsets, confidence rankings, or explicit environmental knowledge. This paper introduces IRLEED, Inverse Reinforcement Learning by Estimating Expertise of Demonstrators, a novel framework that overcomes these hurdles without prior knowledge of …

algorithms assumptions challenge confidence cs.ai cs.lg data datasets expertise imitation learning issue nature quality quality data reinforcement reinforcement learning standard world

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